2023
DOI: 10.1007/s10260-023-00732-y
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Multinomial Thompson sampling for rating scales and prior considerations for calibrating uncertainty

Nina Deliu

Abstract: Bandit algorithms such as Thompson sampling (TS) have been put forth for decades as useful tools for conducting adaptively-randomised experiments. By skewing the allocation toward superior arms, they can substantially improve particular outcomes of interest for both participants and investigators. For example, they may use participants’ ratings for continuously optimising their experience with a program. However, most of the bandit and TS variants are based on either binary or continuous outcome models, leadin… Show more

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